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A supervised learning based semantic location extraction method using mobile phone data

机译:一种基于监督学习的手机数据语义位置提取方法

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Various kinds of location-aware computing and applications are proliferating rapidly nowadays, which makes the location the most critical ingredient. However, on one hand, one location represented as the semantic meaning like “home” is more understandable than conveying the absolute physical coordinate; on the other hand, detected wireless data is a series of random sequence and the formed training vector has not equal-length feature, which may heavily leads to unstable accuracy of location extraction model because of varying human and environment factors. To robustly discover the user''s semantic locations in dynamic wireless environment, we propose a novel Hidden Markov Model (HMM)-based Location Extraction algorithm called HLE, which adopts a supervised learning based method for extracting user''s daily significant semantic locations using mobile phone data. We carry out the HLE algorithm on realistic wireless signal data, experimental results show that the proposed method is reasonable and effective for semantic location extraction in the real-world application.
机译:如今,各种各样的位置感知计算和应用程序正在迅速普及,这使位置成为最关键的组成部分。但是,一方面,像“家”这样的语义表示的位置比传达绝对的物理坐标更容易理解。另一方面,检测到的无线数据是一系列随机序列,并且形成的训练矢量不具有等长特征,这可能会由于人为因素和环境因素的变化而严重导致位置提取模型精度的不稳定。为了在动态无线环境中可靠地发现用户的语义位置,我们提出了一种新的基于隐马尔可夫模型(HMM)的位置提取算法,称为HLE,该算法采用基于监督学习的方法来提取用户的日常重要语义位置。使用手机数据。我们对现实的无线信号数据进行了HLE算法,实验结果表明,该方法对于实际应用中的语义位置提取是合理有效的。

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